Lectures | Mondays 10:15-12:00 | T9/046 |
Exercises | Mondays 12:15-14:00 | T9/046 |
Oral exam | Monday August 1, 2022 | A6/212 |
Make-up oral exam | Tuesday September 27, 2022 | A6/212 |
Please contact vesa.kaarnioja@fu-berlin.de in advance to organize a personal exam appointment.
Mathematical measurement models describe the causal effects of physical systems based on their material properties, initial conditions or other model parameters. In many practical problems, we have measurement data of the outcomes of these so-called "forward models" and we wish to infer the model parameters which caused the observations. This is an inverse problem.
Inverse problems are intrinsically ill-posed: the reconstruction of the unknown quantity may be highly sensitive to noise in the measurements, or a unique solution may not exist. For these reasons, regularization is an essential tool in order to find solutions to inverse problems. In this course, we will consider both deterministic regularization methods and statistical Bayesian inference. We will discuss the main challenges related to inverse problems as well as the main solution techniques.
The course is intended for mathematics students at the Master's level.
Multivariable calculus, linear algebra, basic probability theory, and MATLAB (or some other programming language).
Passing the course exam and completing weekly exercises.
Week 1: Introduction, Fredholm equation and its solvability, truncated SVD (files: recording)
Week 2: Morozov discrepancy principle, Tikhonov regularization, and backward heat equation (files: week2.m)
Week 3: Introduction to X-ray tomography, Landweber-Fridman iteration (files: tomodemo.m)
Week 4: Conjugate gradient method (files: cgdemo.m)
Week 5: Brief introduction to probability theory and Bayes' formula for inverse problems (files: week5.m)
Week 6: Deconvolution example, Bayesian estimators, and well-posedness of Bayesian inverse problems (files: week6.m)
Week 7: Sampling from Gaussian distributions, inverse transform sampling, prior modeling, and the linear Gaussian setting (files: priormodeling.m, week7.m)
Week 8: Small noise limit of the posterior distribution, Monte Carlo, and importance sampling
Week 9: Markov Chain Monte Carlo (files: mh.m, gibbs.m, autocovariance.m)
Week 10: Optimization perspective and Gaussian approximation
Week 11: Brief overview of Bayesian and Kalman filters (files: kfdemo.m)
Week 12: Total variation regularization for X-ray tomography (files: recording, tvdemo.m, sinogram.mat)
Exercise 1
Exercise 2
Exercise 3 (files: week3.mat)
Exercise 4 (files: week3.mat)
Exercise 5
Exercise 6
Exercise 7
Exercise 8
Exercise 9
Exercise 10
Exercise 11 (files: kfdemo.m)
Bonus exercises (files: pde.mat)
Please note that the bonus exercises will not be graded and do not need to be returned.
Dr. Vesa Kaarnioja
Arnimallee 6, Room 212
Consulting hours: By appointment
The course will mainly follow the following texts:
Further topics:
Course No | Course Type | Hours |
---|---|---|
19223901 | Vorlesung | 2 |
19223902 | Übung | 2 |
Time Span | 25.04.2022 - 18.07.2022 |
---|---|
Instructors |
Vesa Kaarnioja
Claudia Schillings
|
0089c_MA120 | 2014, MSc Informatik (Mono), 120 LPs |
0280b_MA120 | 2011, MSc Mathematik (Mono), 120 LPs |
0280c_MA120 | 2018, MSc Mathematik (Mono), 120 LP |
Day | Time | Location | Details |
---|---|---|---|
Monday | 10-12 | 2022-04-25 - 2022-07-18 | |
Monday | 10-12 | T9/046 Seminarraum | 2022-04-25 - 2022-07-18 |
Day | Time | Location | Details |
---|---|---|---|
Monday | 12-14 | T9/046 Seminarraum | Übung 02 |
Monday | 12-14 | Übung 01 |